FARMI: A FrAmework for Recording Multi-Modal Interactions
Patrik Jonell, Mattias Bystedt, Per Fallgren, Dimosthenis Kontogiorgos, José Lopes, Zofia Malisz, Samuel Mascarenhas, Catharine Oertel, Eran Raveh, Todd Shore
- 发表年份
- 2018
- 引用次数
- 6
摘要
In this paper we present (1) a processing architecture used to collect multi-modal sensor data, both for corpora collection and real-time processing, (2) an open-source implementation thereof and (3) a use-case where we deploy the architecture in a multi-party deception game, featuring six human players and one robot. The architecture is agnostic to the choice of hardware (e.g. microphones, cameras, etc.) and programming languages, although our implementation is mostly written in Python. In our use-case, different methods of capturing verbal and non-verbal cues from the participants were used. These were processed in real-time and used to inform the robot about the participants’ deceptive behaviour. The framework is of particular interest for researchers who are interested in the collection of multi-party, richly recorded corpora and the design of conversational systems. Moreover for researchers who are interested in human-robot interaction the available modules offer the possibility to easily create both autonomous and wizard-of-Oz interactions.
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